Systematic study on deep learning-based plant disease detection or classification

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Date

2023

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Springer Nature

Abstract

Plant diseases impact extensively on agricultural production growth. It results in a price hike on food grains and vegetables. To reduce economic loss and to predict yield loss, early detection of plant disease is highly essential. Current plant disease detection involves the physical presence of domain experts to ascertain the disease; this approach has significant limitations, namely: domain experts need to move from one place to another place which involves transportation cost as well as travel time; heavy transportation charge makes the domain expert not travel a long distance, and domain experts may not be available all the time, and though the domain experts are available, the domain expert(s) may charge high consultation charge which may not be feasible for many farmers. Thus, there is a need for a cost-effective, robust automated plant disease detection or classification approach. In this line, various plant disease detection approaches are proposed in the literature. This systematic study provides various Deep Learning-based and Machine Learning-based plant disease detection or classification approaches; 160 diverse research works are considered in this study, which comprises single network models, hybrid models, and also real-time detection approaches. Around 57 studies considered multiple plants, and 103 works considered a single plant. 50 different plant leaf disease datasets are discussed, which include publicly available and publicly unavailable datasets. This study also discusses the various challenges and research gaps in plant disease detection. This study also highlighted the importance of hyperparameters in deep learning. © 2023, The Author(s), under exclusive licence to Springer Nature B.V.

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Keywords

Agriculture, Climate models, Convolutional neural networks, Cost effectiveness, Deep neural networks, Learning systems, Losses, Travel time, Convolutional neural network, Deep convolutional neural network, Deep learning model, Detection approach, Disease detection, Domain experts, Learning models, Plant disease, Plant pathology, Smart agricultures, Climate change

Citation

Artificial Intelligence Review, 2023, 56, 12, pp. 14955-15052

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